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Anticipating Traffic Accidents with Adaptive Loss and Large-scale Incident DB

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In this paper, we propose a novel approach for traffic accident anticipation through (i) Adaptive Loss for Early Anticipation (AdaLEA) and (ii) a large-scale self-annotated incident database for anticipation. The proposed AdaLEA allows a model to gradually learn an earlier anticipation as training progresses. The loss function adaptively assigns penalty weights depending on how early the model can an- ticipate a traffic accident at each epoch. Additionally, we construct a Near-miss Incident DataBase for anticipation. This database contains an enormous number of traffic near- miss incident videos and annotations for detail evaluation of two tasks, risk anticipation and risk-factor anticipation. In our experimental results, we found our proposal achieved the highest scores for risk anticipation (+6.6% better on mean average precision (mAP) and 2.36 sec earlier than previous work on the average time-to-collision (ATTC)) and risk-factor anticipation (+4.3% better on mAP and 0.70 sec earlier than previous work on ATTC).

Tomoyuki Suzuki, Hirokatsu Kataoka, Yoshimitsu Aoki, Yutaka Satoh• 2018

Related benchmarks

TaskDatasetResultRank
Accident AnticipationDAD
AP62.3
13
Accident AnticipationDAD 32
AP52.3
13
Accident AnticipationCCD
AP99.2
11
Accident AnticipationCAP 1.0 (test)
mAUC (0.1)37.9
7
Accident AnticipationNexar 1.0 (test)
mAUC (threshold 0.1)37.8
7
Accident AnticipationDAD (test)
mTTA (s)3.43
6
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